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Reasoning Over Paths via Knowledge Base Completion
- Publication Year :
- 2019
-
Abstract
- Reasoning over paths in large scale knowledge graphs is an important problem for many applications. In this paper we discuss a simple approach to automatically build and rank paths between a source and target entity pair with learned embeddings using a knowledge base completion model (KBC). We assembled a knowledge graph by mining the available biomedical scientific literature and extracted a set of high frequency paths to use for validation. We demonstrate that our method is able to effectively rank a list of known paths between a pair of entities and also come up with plausible paths that are not present in the knowledge graph. For a given entity pair we are able to reconstruct the highest ranking path 60% of the time within the the top 10 ranked paths and achieve 49% mean average precision. Our approach is compositional since any KBC model that can produce vector representations of entities can be used.<br />Comment: Submitted at the TextGraphs2019 Workshop at EMNLP 2019 Conference
Details
- Database :
- arXiv
- Publication Type :
- Report
- Accession number :
- edsarx.1911.00492
- Document Type :
- Working Paper